Application of clustering algorithm in social network user scenario prediction

Author:

Wen Xiaoxian1,Ma Yunhui1,Fu Jiaxin1,Li Jing1

Affiliation:

1. School of Mechateronics Engineering, Harbin Institute of Technology, Harbin, Heilongjiang Province, China

Abstract

In order to improve the ability of social network user behavior analysis and scenario pattern prediction, optimize social network construction, combine data mining and behavior analysis methods to perform social network user characteristic analysis and user scenario pattern optimization mining, and discover social network user behavior characteristics. Design multimedia content recommendation algorithms in multimedia social networks based on user behavior patterns. The current existing recommendation systems do not know how much the user likes the currently viewed content before the user scores the content or performs other operations, and the user’s preference may change at any time according to the user’s environment and the user’s identity, Usually in multimedia social networks, users have their own grading habits, or users’ ratings may be casual. Cluster-based algorithm, as an application of cluster analysis, based on clustering, the algorithm can predict the next position of the user. Because the algorithm has a “cold start”, it is suitable for new users without trajectories. You can also make predictions. In addition, the algorithm also considers the user’s feedback information, and constructs a scoring system, which can optimize the results of location prediction through iteration. The simulation results show that the accuracy of social network user scenario prediction using this method is higher, the accuracy of feature registration of social network user scenario mode is improved, and the real-time performance of algorithm processing is better.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference30 articles.

1. Wang Q. , Liu R. , Cong M. , et al., Application of genetic algorithm to land use optimization for non-point source pollution control based on CLUE-S and SWAT[J], 560 (2018), 86–96.

2. Social Influence in Liver Fluke Transmission: Application of Social Network Analysis of Food Sharing in Thai Isaan Culture[J];Phimpraphai;Advances in Parasitology,2018

3. Risk Assessment in Social Networks Based on User Anomalous Behaviors[J];Laleh;IEEE Transactions on Dependable & Secure Computing,2018

4. On the deep structure of social affect: Attitudes, emotions, sentiments, and the case of “contempt”[J];Matthew;Behavioral & Brain Sciences,2017

5. The Relation of Artificial Intelligence with Internet Of Things: A survey;Mohamed;Journal of Cybersecurity and Information Management,2020

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